Limited training data is one of the biggest challenges in the industrial application of deep learning. Generating synthetic training images is a promising solution in computer vision; however, minimizing the domain gap between synthetic and real-world images remains a problem. Therefore, based on a real-world application, we explored the generation of images with physics-based rendering for an industrial object detection task. Setting up the render engine’s environment requires a lot of choices and parameters. One fundamental question is whether to apply the concept of domain randomization or use domain knowledge to try and achieve photorealism. To answer this question, we compared different strategies for setting up lighting, background, o...
Modern deep learning techniques are data-hungry, which presents a problem in robotics because real-w...
Modern deep learning techniques are data-hungry, which presents a problem in robotics because real-w...
Domain randomisation is a very popular methodfor visual sim-to-real transfer in robotics, due to its...
Limited training data is one of the biggest challenges in the industrial application of deep learnin...
Deep learning methods for computer vision applications require massive visual data for model trainin...
Deep learning methods for computer vision applications require massive visual data for model trainin...
We propose a novel approach to synthesizing images that are effective for training object detectors....
This paper presents a novel approach to training a real-world object detection system based on synth...
International audienceDeep learning has resulted in a huge advancement in computer vision. However, ...
In this paper we evaluate the applicability of using synthetic data, based on computer aided design ...
Modern machine learning methods, utilising neural networks, require a lot of training data. Data gat...
Modern machine learning methods, utilising neural networks, require a lot of training data. Data gat...
Recently, the use of synthetic datasets based on game engines has been shown to improve the performa...
Recently, the use of synthetic datasets based on game engines has been shown to improve the performa...
Recently, the use of synthetic datasets based on game engines has been shown to improve the performa...
Modern deep learning techniques are data-hungry, which presents a problem in robotics because real-w...
Modern deep learning techniques are data-hungry, which presents a problem in robotics because real-w...
Domain randomisation is a very popular methodfor visual sim-to-real transfer in robotics, due to its...
Limited training data is one of the biggest challenges in the industrial application of deep learnin...
Deep learning methods for computer vision applications require massive visual data for model trainin...
Deep learning methods for computer vision applications require massive visual data for model trainin...
We propose a novel approach to synthesizing images that are effective for training object detectors....
This paper presents a novel approach to training a real-world object detection system based on synth...
International audienceDeep learning has resulted in a huge advancement in computer vision. However, ...
In this paper we evaluate the applicability of using synthetic data, based on computer aided design ...
Modern machine learning methods, utilising neural networks, require a lot of training data. Data gat...
Modern machine learning methods, utilising neural networks, require a lot of training data. Data gat...
Recently, the use of synthetic datasets based on game engines has been shown to improve the performa...
Recently, the use of synthetic datasets based on game engines has been shown to improve the performa...
Recently, the use of synthetic datasets based on game engines has been shown to improve the performa...
Modern deep learning techniques are data-hungry, which presents a problem in robotics because real-w...
Modern deep learning techniques are data-hungry, which presents a problem in robotics because real-w...
Domain randomisation is a very popular methodfor visual sim-to-real transfer in robotics, due to its...